A Kernel-Based Method for Resolving Performance Inefficiencies in Mining Frequent-Patterns in Encrypted Data

J. Kon, Gil Jae Lee, J. Fortes, Saneyasu Yamaguchi
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Abstract

Big-data analytics is increasingly important in today's data-centric world. In this context, data encryption is a powerful tool for storing and analyzing private data. In particular, fully homomorphic encryption (FHE) is a promising encryption method that allows the analysis of encrypted data without need for decryption. FHE therefore enables users to outsource data storage and processing to a public cloud system without disclosing their data. However, FHE significantly increases data size and processing time, thus making it essential to improve performance in both I/O and processing. In most cases, the behavior of CPU resource consumption can be monitored and understood from code structure and logic. On the contrary, I/O resource consumption, which is controlled by the operating system kernel, is much harder to observe and understand. This paper addresses this issue in the context of a widely used data-analytics technique for secure frequent-pattern mining, called FHE Apriori. First, we propose a method for observing the I/O requests of FHE Apriori by modifying the operating system kernel. Second, we use the proposed method to characterize the I/O behavior of FHE Apriori and identify inefficiencies of storage access (that can be addressed to improve performance). Third, application-level changes based on this identification are described, enabling prefetching of data at runtime before they are needed. Fourth, the benefit of the described changes is quantitatively evaluated, showing that application performance improves by 23%.
一种基于核的加密数据高频模式挖掘效率低下问题解决方法
大数据分析在当今以数据为中心的世界中变得越来越重要。在这种情况下,数据加密是存储和分析私有数据的强大工具。特别是,完全同态加密(FHE)是一种很有前途的加密方法,它允许在不需要解密的情况下分析加密数据。因此,FHE使用户可以将数据存储和处理外包给公共云系统,而无需公开其数据。但是,FHE会显著增加数据大小和处理时间,因此必须提高I/O和处理的性能。在大多数情况下,可以从代码结构和逻辑中监视和理解CPU资源消耗的行为。相反,由操作系统内核控制的I/O资源消耗更难观察和理解。本文在广泛使用的用于安全频繁模式挖掘的数据分析技术(称为FHE Apriori)的背景下解决了这个问题。首先,我们提出了一种通过修改操作系统内核来观察FHE Apriori I/O请求的方法。其次,我们使用提出的方法来表征FHE Apriori的I/O行为,并识别存储访问的低效率(可以解决以提高性能)。第三,描述基于此标识的应用程序级更改,支持在运行时需要数据之前预取数据。第四,对所描述的变化的好处进行了定量评估,表明应用程序性能提高了23%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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